本文转自AI源创评论
sample_df = df.sample(100)
A 镇有 100 万工人,
B 镇有 200 万工人,以及
C 镇有 300 万退休人员。
from sklearn.model_selection import train_test_split
X_train, X_test, y_train, y_test = train_test_split(X, y,
stratify=y,
test_size=0.25)
假设您有一个项目流,它长度较大且未知以至于我们只能迭代一次。 创建一个算法,从这个流中随机选择一个项目,这样每个项目都有相同的可能被选中。
import randomdef generator(max):
number = 1
while number < max:
number += 1
yield number# Create as stream generator
stream = generator(10000)# Doing Reservoir Sampling from the stream
k=5
reservoir = []
for i, element in enumerate(stream):
if i+1<= k:
reservoir.append(element)
else:
probability = k/(i+1)
if random.random() < probability:
# Select item in stream and remove one of the k items already selected
reservoir[random.choice(range(0,k))] = elementprint(reservoir)
------------------------------------
[1369, 4108, 9986, 828, 5589]
移除第一个项目的概率是项目 3 被选中的概率乘以项目 1 被随机选为水塘中 2 个要素的替代候选的概率。这个概率是: 2/3*1/2 = 1/3 因此,选择项目 1 的概率为: 1–1/3=2/3
from sklearn.datasets import make_classificationX, y = make_classification(
n_classes=2, class_sep=1.5, weights=[0.9, 0.1],
n_informative=3, n_redundant=1, flip_y=0,
n_features=20, n_clusters_per_class=1,
n_samples=100, random_state=10
)X = pd.DataFrame(X)
X[ target ] = y
num_0 = len(X[X[ target ]==0])
num_1 = len(X[X[ target ]==1])
print(num_0,num_1)# random undersampleundersampled_data = pd.concat([ X[X[ target ]==0].sample(num_1) , X[X[ target ]==1] ])
print(len(undersampled_data))# random oversampleoversampled_data = pd.concat([ X[X[ target ]==0] , X[X[ target ]==1].sample(num_0, replace=True) ])
print(len(oversampled_data))------------------------------------------------------------
OUTPUT:
90 10
20
180
from imblearn.under_sampling import TomekLinks
tl = TomekLinks(return_indices=True, ratio= majority )
X_tl, y_tl, id_tl = tl.fit_sample(X, y)
from imblearn.over_sampling import SMOTE
smote = SMOTE(ratio= minority )
X_sm, y_sm = smote.fit_sample(X, y)
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